Motivated by the amount of code that goes unidentified on the web, we
introduce a practical method for algorithmically identifying the programming
language of source code. Our work is based on supervised learning and
intelligent statistical features. We also explored, but abandoned, a
grammatical approach. In testing, our implementation greatly outperforms that
of an existing tool that relies on a Bayesian classifier.
We find exact Fermi coordinates for timelike geodesic observers for a class
of spacetimes that includes anti-de Sitter spacetime, de Sitter spacetime, the
constant density interior Schwarzschild spacetime with positive, zero, and
negative cosmological constant, and the Einstein static universe. Maximal
charts for Fermi coordinates are discussed.